The world is expecting an aging population and shortage of healthcare professionals. This poses the problem of providing a safe and dignified life for the elderly. Technological solutions involving cameras can contribute to safety, comfort and efficient emergency responses, but they are invasive of privacy. We use 'Griddy', a prototype with a Panasonic Grid-EYE, a low-resolution infrared thermopile array sensor, which offers more privacy. Mounted over a bed, it can determine if the user is on the bed or not without human interaction. For this purpose, two datasets were captured, one (480 images) under constant conditions, and a second one (200 images) under different variations such as use of a duvet, sleeping with a pet, or increased room temperature. We test three machine learning algorithms: Support Vector Machines (SVM), k-Nearest Neighbors (k-NN) and Neural Network (NN). With 10-fold cross validation, the highest accuracy in the main dataset is for both SVM and k-NN (99%). The results with variable data show a lower reliability under certain circumstances, highlighting the need of extra work to meet the challenge of variations in the environment.
翻译:全世界都在等待着老龄化的人口和保健专业人员的短缺。这造成了为老年人提供安全和有尊严的生活的问题。涉及照相机的技术解决方案可以有助于安全、舒适和高效的应急反应,但它们是侵犯隐私的。我们使用“Griddy”,这是一个带有Panasonic Great-EYE的原型,一个低分辨率红外红外线热室阵列传感器,它提供更多的隐私。它挂在一张床上,它可以确定用户是否在床上没有人际互动。为此目的,在固定条件下捕捉了两个数据集,一个(480图象),第二个(200图象),在不同变种下,如使用哑弹、与宠物睡觉或提高房间温度。我们测试了三种机器学习算法:支持病媒机器(SVM)、K-Nearest Neighbors(k-NNNN)和Nural网络(NNN)。经过10倍的交叉校验,主数据集的最高精确度是SVM和K-NNN(99 % ),结果显示在某种情况下的可变的可靠性较低。结果显示在某种情况下对环境的挑战。